Python parser for Scientific datasets
Project description
sciparse - Scientific Dataset parsing
Getting Started
Features
Common Issues
How to Use
Adding Additional Unit Tests
- Any time you want to add additional unit tests just add them to those in the
tests/
directory and prepend with the nametest
. These will be automatically found by pytest and run during local commits and remote builds.
Writing the Documentation
- The documentation source is located in
docs/source
and is written in restructured text (markdown is also available).
Building the Documentation
Simply run make html
from the docs/
directory. This will compile the
files in the docs/source/
directory, and place them in the main docs/
directory where github pages can find them.
Dependencies / Technologies Used
Acknowledgements
Thanks to all the great people on stack overflow and github, for their seemingly boundless tolerance to my and others' questions.
Project details
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